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Image-based recognition framework for robotic weed control systems

机译:机器人除草系统基于图像的识别框架

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In this paper, we introduce a novel and efficient image-based weed recognition system for the weed control problem of Broad-leaved Dock (Rumex obtusifolius L.). Our proposed weed recognition system is developed using a framework, that allows the examination of the affects for various image resolutions in detection and recognition accuracy. Moreover, it includes state-of-the-art object/image categorization processes such as feature detection and extraction, codebook learning, feature encoding, image representation and classification. The efficiency of those processes have been improved and optimized by introducing methodologies, techniques and system parameters specially tailored for the goal of weed recognition. Through an exhaustive optimization process, which is presented as our experimental evaluation, we conclude to a weed recognition system that uses an image input resolution of 200 x150, SURF features over dense feature extraction, an optimized Gaussian Mixture Model based codebook combined with Fisher encoding, using a two level image representation. The resulting image representation vectors are classified using a linear classifier. This system is experimentally shown to yield state-of-the-art recognition accuracy of 89.09% in the examined dataset. Our proposed system is also experimentally shown to comply with the specifications of the examined applications since it provides low false-positive results of 4.38%. As a result, the proposed framework can be efficiently used in weed control robots for precision farming applications.
机译:在本文中,我们针对阔叶坞(Rumex obtusifolius L.)的杂草控制问题引入了一种新颖且高效的基于图像的杂草识别系统。我们提出的杂草识别系统是使用框架开发的,该框架允许检查各种图像分辨率对检测和识别准确性的影响。此外,它包括最新的对象/图像分类过程,例如特征检测和提取,码本学习,特征编码,图像表示和分类。通过引入专为杂草识别目标量身定制的方法,技术和系统参数,可以提高和优化这些过程的效率。通过详尽的优化过程(作为我们的实验评估),我们得出了一个杂草识别系统,该系统使用200 x150的图像输入分辨率,SURF特征优于密集特征提取,基于高斯混合模型的优化密码本与Fisher编码相结合,使用两层图像表示。使用线性分类器对所得图像表示矢量进行分类。实验证明,该系统在检查的数据集中可产生89.09%的最新识别精度。我们的拟议系统还通过实验证明符合所检查应用程序的规范,因为它提供了4.38%的低假阳性结果。结果,所提出的框架可以在杂草控制机器人中有效地用于精确的农业应用。

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